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Infrared Small Target Detection Utilizing the Enhanced Closest-Mean Background Estimation

机译:红外小目标检测利用增强的最近平均背景估计

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摘要

Background estimation is an efficient infrared (IR) small target detection method. However, to deal with unknown targets, the estimation window in existing algorithms should be adjusted to perform multiscale detection and requires a lot of calculations. Besides, the stages during and after estimation have received wide attention in existing algorithms, but the research on the stages before estimation is insufficient. Moreover, existing algorithms typically regard the maximum value of different orientations as the estimation value. However, when a dim target is adjacent to high-brightness background, it is easily submerged. This article proposes a three-layer estimation window to detect targets of different sizes with only a single-scale calculation. The enhanced closest-mean background estimation method is then proposed and carefully designed before, during, and after the estimation. Before estimation, the matched filter is adopted to improve the image signal-to-noise ratio. During estimation, the principle of closest-mean is proposed to suppress high-brightness background. After estimation, a ratio-difference operation is performed to enhance the true target and suppress the background simultaneously. A simple checking mechanism is proposed to further improve the detection performance. Experiments on some IR images demonstrate the effectiveness and robustness of the proposed method. Compared with existing algorithms, the proposed method has better target enhancement, background suppression, and computational efficiency.
机译:背景技术估计是一种有效的红外(IR)小目标检测方法。然而,为了处理未知的目标,应调整现有算法中的估计窗口以执行多尺度检测,并且需要大量计算。此外,估计期间和之后的阶段在现有算法中得到了广泛的关注,但在估计之前对阶段的研究不足。此外,现有算法通常将不同取向的最大值视为估计值。然而,当暗淡目标与高亮度背景相邻时,它很容易被淹没。本文提出了一个三层估计窗口,以仅用单级计算检测不同大小的目标。然后在估计之前,期间和之后仔细设计增强的最接近的最接近的背景估计方法。在估计之前,采用匹配的滤波器来提高图像信噪比。在估计期间,提出了最接近均值的原理来抑制高亮度背景。在估计之后,执行比率差异操作以增强真实目标并同时抑制背景。提出了一种简单的检查机制,以进一步提高检测性能。对某些IR图像的实验证明了所提出的方法的有效性和鲁棒性。与现有算法相比,该方法具有更好的目标增强,背景抑制和计算效率。

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